US8457357B2 - Relative pose estimation of non-overlapping cameras using the motion of subjects in the camera fields of view - Google Patents
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06T—IMAGE DATA PROCESSING OR GENERATION, IN GENERAL
- G06T7/00—Image analysis
- G06T7/70—Determining position or orientation of objects or cameras
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06T—IMAGE DATA PROCESSING OR GENERATION, IN GENERAL
- G06T7/00—Image analysis
- G06T7/70—Determining position or orientation of objects or cameras
- G06T7/73—Determining position or orientation of objects or cameras using feature-based methods
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06T—IMAGE DATA PROCESSING OR GENERATION, IN GENERAL
- G06T7/00—Image analysis
- G06T7/70—Determining position or orientation of objects or cameras
- G06T7/77—Determining position or orientation of objects or cameras using statistical methods
Definitions
- pose location and orientation of a second camera relative to a first camera using images gathered from the two cameras as inputs.
- Some prior methods have been based on determining correspondences between points in the image gathered by the first camera and points in the image gathered by the second camera. However, such methods rely upon at least a portion of the image gathered by the first camera overlapping at least a portion of the image gathered by the second camera.
- Embodiments of the present invention relate to a system and method for determining a relative pose between two cameras using input data obtained from the motion of subjects in the camera fields of view.
- first image data representing a first field of view of a first video camera is received
- second image data representing a second field of view of a second video camera is received.
- Trajectory information is determined from the first and second image data.
- the trajectory information represents characterizable trajectories or paths along which each of at least four persons or other suitable subjects move between the first field of view and the second field of view.
- four persons or “four subjects” is used for purposes of clarity, two or more of the trajectories can be those of the same individual or other unique subject in an instance in which the same individual or subject appears in multiple images of the fields of view that are captured at different times.
- a plurality of head position points in the first image data and a plurality of head position points in the second image data are determined. Each plurality of head position points corresponds to successive positions of a head region of a person at a corresponding plurality of timepoints spanning a time period.
- a plurality of foot position points in the first image data and a plurality of foot position points in the second image data are determined. Each plurality of foot position points corresponds to the plurality of head position points and corresponds to successive positions of a foot region of the person at a corresponding plurality of timepoints spanning a time period.
- the terms “head” and “foot” refer, respectively, the topmost and bottommost region of a subject, regardless of whether the subject is a human, animal or inanimate object.
- At least eight lines in the first image data are determined using the head position points and foot position points.
- the eight lines comprise at least four head lines and at least four foot lines.
- the eight lines are determined by fitting each plurality of head position points in the first image data to one of the head lines and fitting each plurality of foot position points to one of the foot lines.
- At least eight lines in the second image data are determined using the head position points and the foot position points.
- the eight lines comprise at least four head lines and at least four foot lines.
- the eight lines are determined by fitting each plurality of head position points in the second image data to one of the head lines and fitting each plurality of foot position points to one of the foot lines.
- Each head line in the second image data corresponds to one head line in the first image data
- each foot line in the second image data corresponds to one foot line in the first image data.
- a first planar homography and a second planar homography are then computed.
- Each of the first and second planar homographies represents a relationship between each line in the first image data and a corresponding line in the second image data.
- the relative pose between the first video camera and the second video camera is computed in response to the first planar homography and second planar homography.
- FIG. 1 illustrates an exemplary environment in which two cameras have non-overlapping fields of view of a ground plane.
- FIG. 2A is a perspective view of a conceptualized camera of FIG. 1 , showing the camera's frame of reference.
- FIG. 2B is a front elevation view of the conceptualized camera of FIGS. 1 and 2A , showing the camera's frame of reference.
- FIG. 3 is similar to FIG. 1 , but with four exemplary pedestrians shown on the ground plane at successive points in time.
- FIG. 4 is a block diagram of an exemplary computer system that is programmed or configured to effect a method for determining a relative pose between two cameras.
- FIG. 5 is a flow diagram illustrating an exemplary method for determining a relative pose between two cameras.
- FIG. 6 is similar to FIG. 3 , but showing exemplary head position points and foot position points defined by the pedestrian trajectories.
- FIG. 7 is similar to FIG. 6 , but showing head lines and foot lines fitted to the exemplary head position points and foot position points.
- FIG. 8A illustrates an exemplary image corresponding to the first image data, showing the foot position points and foot lines.
- FIG. 8B illustrates an exemplary image corresponding to the second image data, showing the foot position points and foot lines.
- FIG. 9A is similar to FIG. 8A but showing only two foot lines for purposes of clarity.
- FIG. 9B illustrates an image resulting from projecting the foot lines in the first image data onto the second image data using a first planar homography.
- FIG. 10A illustrates an aspect of a refinement process, in which an exemplary adjustment is made to a foot line.
- FIG. 10B illustrates a result of the adjustment shown in FIG. 10A in the image corresponding to the second image data.
- FIG. 11A illustrates another aspect of the refinement process, in which an exemplary adjustment is made to the first planar homography.
- FIG. 11B illustrates a result of the adjustment shown in FIG. 11A in the image corresponding to the second image data.
- FIG. 12A illustrates an exemplary image corresponding to the first image data but showing only a single foot line, two foot position points, and the direction of the trajectory.
- FIG. 12B illustrates an exemplary image corresponding to the second image data but showing only a single foot line, two foot position points, and the direction of the trajectory.
- FIG. 13 illustrates the result of backprojecting foot position points onto the ground plane using a solution obtained from the planar homographies.
- a first video camera 10 has a first field of view 12
- a second video camera 14 has a second field of view 16 .
- fields of view 12 and 16 are co-planar and do not overlap, though they may overlap in other embodiments.
- each of video cameras 10 and 14 has a central optical axis 18 that generally corresponds to the direction in which it is pointing and thus substantially determines the location of its corresponding field of view 12 and 16 .
- the “pose” of each of video cameras 10 and 14 is defined by its location in space as well as the orientation of its central optical axis 18 with respect to a 3-axis frame of reference.
- FIGS. 2A-2B An exemplary frame of reference is shown in FIGS. 2A-2B as having a Z axis aligned with the central optical axis 18 , and X and Y axes at mutually perpendicular angles to each other and the Z axis.
- the system and method of the exemplary embodiment relate to determining the relative pose between video cameras 10 and 14 using input data obtained from pedestrian motion.
- the relative pose between video cameras 10 and 14 is defined by the difference between the location in space (i.e., the camera's coordinate system) and the orientation of central optical axis 18 of video camera 10 and the location in space and orientation of central optical axis 18 of video camera 14 .
- the relative pose information includes a 3-dimensional spatial offset or translation between video cameras 10 and 14 and a 3-dimensional angular offset or rotation between their central optical axes, i.e., the directions in which video cameras 10 and 14 are pointing.
- FIG. 3 illustrates the pedestrian motion concept.
- at least four persons (pedestrians) 20 , 22 , 24 and 26 are identified in the first and second fields of view 12 and 16 who move along substantially linear trajectories or paths within and between first field of view 12 and second field of view 16 . That is, part of each person's trajectory is within first field of view 12 and part is within second field of view 16 .
- each person 20 , 22 , 24 and 26 will appear in multiple frames of video captured by each of first and second video cameras 10 and 14 . It should be noted that persons 20 , 22 , 24 and 26 need not be different individuals.
- the image data described below includes images captured by video cameras 10 and 14 at different times
- the image data can represent the same individual moving along two or more trajectories.
- the trajectories are linear, in other embodiments the trajectories can have any shape that can be mathematically characterized in a way that enables the location of a person or other subject at a future point in time to be predicted, such as a circle, ellipse or parabola.
- pedestrians Although it is possible to use the motion of subjects other than pedestrians to determine relative camera pose, pedestrians have useful properties that include having a height that falls within a relatively narrow range and being readily susceptible of being modeled as a vertical line between head and foot. Therefore, although in the exemplary embodiment the subjects whose trajectories are determined are pedestrians, in other embodiments the subjects can be of any other type, such as an animal or vehicle.
- FIG. 3 For purposes of illustration, the environment in which persons 20 - 26 move is shown in FIG. 3 as though the multiple frames of video in which persons 20 - 26 appear were superimposed on each other. That is, each of persons 20 - 26 is shown in FIG. 3 at the positions the person would occupy at successive points in time. Also for purposes of illustration, the environment in which persons 20 - 26 move is shown in FIG. 3 from a perspective of an all-encompassing (“observer's-eye”) field of view that is greater than first and second fields of view 12 and 16 of first and second video cameras 10 and 14 . The entire trajectory of none of persons 20 - 26 is within both the first and second fields of view 12 and 16 . That is, neither of video cameras 10 and 14 can see the entire trajectory of any of persons 20 - 26 .
- observer's-eye all-encompassing
- the perspective would be that of a spectator (observer) who might be sitting in the stands or bleachers overlooking the field.
- persons 20 - 26 and their trajectories can be identified and the corresponding trajectory information can be input into a system 30 ( FIG. 4 ) using any suitable combination of manual or automated methods.
- an exemplary system 30 for determining a relative pose between first and second video cameras 10 and 14 includes a computer system 32 .
- computer system 32 essentially can be a personal computer system that has been suitably programmed or otherwise configured, as described below. But for the software elements described below, computer system 32 can have a conventional structure and configuration. Accordingly, computer system 32 includes hardware and software elements of the types commonly included in such computer systems, such as a processor subsystem 34 , a memory subsystem 36 , non-volatile data storage 38 (e.g., a hard disk drive, FLASH memory, etc.), a network interface 40 , and one or more ports 42 for reading from and writing to external devices.
- Such external devices can include a removable data storage medium 44 , such as a Universal Serial Bus (USB) “thumb drive.”
- Computer system 32 also includes a peripheral interface 46 through which data communication with a keyboard 48 , mouse 50 and display 52 occurs.
- Peripheral interface 46 can comprise USB ports of the same type as port 42 or any other suitable type of ports.
- computer system 32 can include hardware and software elements in addition to those described herein or that are different from those described herein. The above-described elements can communicate with one another via a digital bus 54 .
- Computer system 32 can communicate with remote devices (not shown) via a network connection 56 , such as a connection to the Internet.
- Memory subsystem 36 is generally of a type in which software elements, such as data and programming code, are operated upon by processor subsystem 34 .
- processor subsystem 34 operates in accordance with programming code, such as operating system code and application program code.
- programming code such as operating system code and application program code.
- application program code can include the following software elements: a trajectory capture element 58 , a line determination element 60 , a homography computation element 62 , and a projection element 64 .
- processor subsystem 34 As programmed or otherwise configured in accordance with the above-described software elements, the combination of processor subsystem 34 , memory subsystem 36 (or other element or elements in which software is stored or resides) and any related elements generally defines a programmed processor system 66 . It should also be noted that the combination of software elements and the medium on which they are stored or in which they reside (e.g., memory subsystem 36 , data storage 38 , removable data storage medium 44 , etc.) generally constitutes what is referred to in the patent lexicon as a “computer program product.”
- a computer-implemented method for determining relative camera pose can be initiated by a person (user) who operates computer system 32 .
- a user can operate computer system 32 locally using keyboard 48 , mouse 50 , display 52 , etc., or remotely via network connection 56 .
- computer system 32 can provide a suitable user interface through which the user can interact with computer system 32 .
- a user can control computer system 16 in a manner that causes computer system 16 to obtain input images 68 from, for example, data storage 38 , effect the methods described below, and produce output data (files) 70 that include information describing the relative pose between first and second video cameras 10 and 14 .
- the flowchart 72 illustrated in FIG. 5 represents an exemplary method for determining relative camera pose.
- a person of ordinary skill in the art is readily capable of implementing this exemplary method in the form of software elements such as trajectory capture element 58 , line determination element 60 , homography computation element 62 , and projection element 64 .
- the blocks of flowchart include: a block 74 that indicates receiving first image data representing first field of view 12 ; a block 76 that indicates receiving second image data representing second field of view 16 ; a block 78 that indicates determining trajectories of (at least) four persons moving between first field of view 12 and second field of view 16 ; a block 80 that indicates determining head and foot position points for each person (trajectory) in the first and second image data; a block 82 that indicates determining (at least) eight lines in the first and second image data using the head and foot position points; a block 84 that indicates computing first and second planar homographies using the (at least) eight lines; and a block 86 that indicates computing the relative camera pose using the first and second planar homographies.
- the exemplary method can be performed in the order indicated by blocks 74 - 86 or, in other embodiments, any other suitable order. Although only method steps or actions indicated by blocks 74 - 86 are described, in other embodiments the method can include additional steps or actions.
- first image data representing first field of view 12 is received.
- computer system 32 operating in accordance with trajectory capture element 58 , can operate upon or otherwise receive input images 68 that have been captured by first video camera 10 .
- second image data representing second field of view 16 is received.
- computer system 32 operating in accordance with trajectory capture element 58 , can operate upon or otherwise receive input images 68 that have been captured by second video camera 14 .
- the input images can comprise successive frames of digital video information captured by first and second video cameras 14 .
- the surface on which persons 20 - 26 ( FIG. 1 ) appear to walk in the video images can be referred to as a ground plane.
- trajectories of (at least) four persons moving between first field of view 12 and second field of view 16 are determined.
- computer system 32 operating in accordance with trajectory capture element 58 ( FIG. 4 ), can operate upon the first and second image data. Due to mathematical constraints described below, at least four trajectories are used as inputs. However, due to real-world considerations, such as noise in the video images and other sources of error that essentially cannot be reduced to zero, it may be desirable to determine more than four trajectories, such as several dozen trajectories. The more trajectories that are determined, the more accurate the ultimate computation of relative camera pose.
- this trajectory information represents each of at least four persons 20 - 26
- persons 20 - 26 need not be unique individuals.
- person 20 and person 22 can be the same individual who moves along two different trajectories.
- each trajectory that is determined is substantially linear.
- substantially linear means but for deviations from a linear path due to natural human gait or other slight deviations to be expected of humans attempting to walk in a straight line.
- Persons who are not moving in a straight line within and between first and second fields of view 12 and 16 are not relevant to the exemplary method.
- the trajectories have any shape that can be mathematically characterized in a way that enables the location of a person or other subject at a future point in time to be predicted.
- at least two of the trajectories should be different from each other.
- the trajectory or path along which at least one of persons 20 - 26 moves is not parallel to the trajectory or path along which at least one other of persons 20 - 26 moves.
- Determining such trajectory information can be performed in any suitable manner and involve any suitable degree of automation.
- a fully automated method could be based upon image processing algorithms that identify and analyze moving objects in video information.
- a less automated method can include a human operator (user) viewing the first and second image data on display 52 ( FIG. 4 ) and identifying the persons 20 - 26 ( FIG. 1 ) who appear to be moving in a straight line between the first field of view (represented by the first image data) and the second field of view (represented by the second image data).
- the screen displays or views that such a human operator or user would see by viewing the first and second image data are not shown for purposes of clarity.
- head and foot position points are determined for each trajectory determined in accordance with block 78 .
- computer system 32 operating in accordance with line determination element 60 ( FIG. 4 ), can operate upon the first and second image data.
- head position points refers to points in the image data at which the head of the person who is the subject of a trajectory is substantially located at successive points in time (e.g., in successive video frames).
- the screen displays or views that a user would see by viewing the first and second image data are not shown for purposes of clarity, exemplary head position points 88 , 90 , 92 and 94 of persons 20 , 22 , 24 and 26 , respectively, are shown from the observer's-eye perspective in FIG. 6 .
- foot position points similarly refers to points in the image data at which the foot of the person who is the subject of a trajectory is substantially located at successive points in time. For each trajectory, at each such point in time, both a head position point and a corresponding foot position point are determined. Exemplary foot position points 96 , 98 , 100 and 102 of persons 20 , 22 , 24 and 26 , respectively, are shown from the observer's-eye perspective in FIG. 6 .
- Determining head and foot position points can be performed in any suitable manner and involve any suitable degree of automation.
- a fully automated method could be based upon image processing algorithms that identify a person's head and feet in video information.
- a less automated method can include a user viewing the first and second image data on display 52 ( FIG. 4 ) and, using mouse 50 , marking head positions 88 - 94 and foot positions 96 - 102 in a manner that identifies these head and foot positions as trajectory information in computer system 32 .
- (at least) eight lines are determined from the head and foot position points in the first image data, and (at least eight) corresponding lines are determined from the head and foot position points in the second image data.
- computer system 32 operating in accordance with line determination element 60 ( FIG. 4 ), can operate upon the head and foot position points.
- a first set of eight exemplary lines 104 , 106 , 108 , 110 , 112 , 114 , 116 and 118 are shown (in solid line) from the observer's-eye perspective in FIG. 7 .
- Lines 104 , 106 , 108 and 110 are referred to as head lines
- lines 112 , 114 , 116 and 118 are referred to as foot lines.
- a second set of eight exemplary lines 120 , 122 , 124 , 126 , 128 , 130 , 132 and 134 are similarly shown (in broken line) from the observer's-eye perspective in FIG. 7 .
- Lines 120 , 122 , 124 and 126 are head lines, and lines 128 , 130 , 132 and 134 are foot lines.
- Head lines 104 - 110 can be determined by performing a line-fitting method upon those head position points 88 - 94 , respectively, in the first image data.
- foot lines 104 - 110 can be determined by performing a line-fitting method upon those foot position points 96 - 102 , respectively, in the first image data.
- the head and foot lines 120 - 126 and 128 - 134 , respectively, in the second image data can be similarly determined by performing a line-fitting method upon those head position points 88 - 94 in the second image data and those of the foot position points 96 - 102 in the second image data.
- the eight lines 104 - 118 in the first image data and the corresponding eight lines 120 - 134 in the second image data are shown as being co-linear.
- a line 104 - 118 in the first image data that is determined in the manner described above likely will not be precisely co-linear with the corresponding line 120 - 134 in the second image data. For this reason, the refinement method described below may be included.
- first and second planar homographies are computed using at least the above-described eight lines in the first image data and eight lines in the second image data.
- computer system 32 operating in accordance with homography computation element 62 ( FIG. 4 ), can operate upon the lines.
- a planar homography is a projective transformation that maps points (and lines) from one plane to another plane.
- each of the first and second planar homographies represents a relationship between each line in the first image data and a corresponding line in the second image data.
- first planar homography could be computed from the four corresponding foot lines in the first and second image data
- second planar homography could be computed from the four corresponding head lines in the first and second image data
- a refinement method is included in which the second planar homography is ultimately computed from (i.e., in response to) the first planar homography.
- the refinement method exploits the fact that a person's head and feet are substantially vertically aligned and thus each head position point and corresponding foot position point are substantially vertically aligned.
- the first planar homography is computed from four or more corresponding foot lines 112 - 118 and 128 - 134 ; the first planar homography is not computed from any of head lines 104 - 110 .
- the first planar homography represents a relationship between each foot line 112 - 118 in first image data and each corresponding foot line 128 - 134 in the second image data.
- each foot line 112 - 118 in first image data and each corresponding foot line 128 - 134 in the second image data are shown in FIG. 7 as being co-linear for purposes of illustration, the relationship is likely to be less than perfectly co-linear due to measurement inaccuracies.
- the first planar homography thus embodies the error or degree to which the corresponding lines in the first and second image data are not co-linear.
- the refinement method adjusts the first planar homography to ensure co-linearity between the first and second planar homographies.
- Foot lines 112 - 118 are illustrated in FIG. 8A , which is a view from the perspective of first camera 10 (rather than the observer's-eye view of FIG. 7 ).
- a user can view an image similar to FIG. 8A on display 52 ( FIG. 4 ) by causing computer system 32 to display foot lines 112 - 118 and their corresponding foot position points 96 - 102 in the first image data.
- foot lines 128 - 134 are illustrated in FIG. 8B , which is a view from the perspective of second camera 14 (rather than the observer's-eye view of FIG. 7 ).
- a user can view an image similar to FIG. 8B on display 52 ( FIG.
- FIGS. 8A-B positions and orientations of foot lines 112 - 118 and 128 - 134 in FIGS. 8A-B are shown for purposes of illustration only and may not correspond to the perspectives of first and second cameras 10 and 14 that are conveyed by FIGS. 1 , 3 , 6 and 7 .
- the first planar homography can be computed by, for example, performing a discrete linear transform on the above-referenced plurality of foot lines.
- the discrete linear transform produces a 3 ⁇ 3 matrix H, representing the first planar homography.
- FIGS. 9A-B The projection of foot lines 112 - 118 onto the second image data using the first planar homography or matrix H is illustrated in FIGS. 9A-B .
- FIG. 9A which is otherwise the same as FIG. 8A , only foot lines 112 and 118 are shown, and foot lines 114 and 116 are omitted.
- the original foot lines 128 - 134 ( FIG. 8B ) in the second image data are discarded and replaced by the results of the projection, shown as foot lines 128 ′ and 134 ′ in FIG. 9B .
- FIG. 9A for purposes of clarity in FIG.
- foot lines 128 ′ and 134 ′ are shown, and the two foot lines that replace the original foot lines 130 and 132 in the second image data are omitted.
- foot lines 128 ′ and 134 ′ in the second image data that represent the results of the projection are not the same as the original foot lines 128 and 134 in FIG. 8B before the projection.
- foot line 128 ′ in FIG. 9B appears to have translated rightward of the location of the original foot line 128 in FIG. 8B and rotated slightly.
- foot line 134 ′ in FIG. 9B appears to have rotated severely and translated slightly with respect to foot line 134 in FIG. 8B .
- the locations and orientations of foot lines 128 ′ and 134 ′ in FIG. 9B would be exactly the same as the locations and orientations of foot lines 128 and 134 in FIG. 8B .
- a least-squares line-fitting method such as the well-known Levenberg-Marquardt method, can then be applied to the first planar homography.
- the refinement method can generally be described with reference to FIGS. 10-11 and more specifically be described with reference to the equations below.
- Each of the (at least four) foot lines in the first image data can be described using two numbers: a slope and an intercept.
- the first planar homography H can be described using eight numbers. (Although H is a 3 ⁇ 3 matrix and thus consists of nine numbers, there is scalar uncertainty which eliminates one degree of freedom.)
- the Levenberg-Marquardt method iteratively makes small adjustments to the parameters of the foot lines in the first image data and the matrix elements of the first planar homography until the collective least-squares error for all of the foot lines in both the first and second image data falls below a predetermined threshold.
- Using the resulting or adjusted first planar homography H′ promotes a more accurate result for the relative pose computation than if the original first planar homography H were used.
- Adjustment of the slopes and intercepts using the Levenberg-Marquardt method can be visualized with reference to FIGS. 10-11 .
- the intercept of foot line 112 can be, for example, adjusted downwardly from its original position shown in FIG. 9A (which is also shown in broken line in FIG. 10A ). If, for example, the intercept of foot line 112 is adjusted in this manner while leaving the first planar homography H unchanged and leaving foot line 118 (and the other two foot lines 114 and 116 in the first image data that are not shown in FIG.
- Equation 2 For purposes of clarity, then the next iteration of Equation 2 might result in, for example, foot line 128 ′ in the second image data translating slightly to the left (i.e., a change in intercept), as shown in FIG. 10B .
- foot line 128 ′ appears to be slightly better fitted to foot position points 96 than it was in its previous position (shown in broken in line in FIG. 10B ).
- one or more of the numbers describing the first planar homography H can be adjusted, while leaving the slopes and intercepts of foot lines 112 - 118 unchanged.
- Such an adjustment might result, for example, in rotations and translations (i.e., changes in slope and intercept) of one or more of foot lines 128 ′ and 134 ′ (or the other foot lines in the second image data that are not shown in FIG. 11B for purposes of clarity).
- the previous positions of foot lines 128 ′ and 134 ′ prior to such resulting rotations and translations are shown in broken line in FIG. 11B .
- the second planar homography can then be computed in response to the first planar homography by, for example, computing a vertical vanishing point and a characteristic ratio in response to each foot position point and corresponding head position point, and then computing the second planar homography in response to the first planar homography, the vertical vanishing point and the characteristic ratio.
- a vertical vanishing point can be determined for each of persons 20 , 22 , 24 and 26 as seen through each of cameras 10 and 14 .
- axes (not shown) can be defined that extend from each head position point 88 of person 20 to the corresponding foot position point 96 of that person 20 for each image or instance in which person 20 appears.
- the characteristic ratio also relates to vertically oriented objects, with the additional constraint that the objects are all the same height.
- a characteristic ratio established from pedestrian motion or trajectory can be used to help compute the second planar homography 112 .
- G 1 represents the homology between the ground and ceiling planes in the first camera
- G 2 represents the homology between the ground and ceiling planes in the second camera
- H is the ground plane homography between the first and second cameras
- H 2 is the ceiling plane homography between the first and second cameras.
- An arbitrary homology G is defined by the identity matrix I, the characteristic ratio ⁇ , the image location of the vertical vanishing point v and the image location of the horizon line h.
- the horizon line h is determined by the camera's focal length f, and the x- and y-components v x and v y of the vertical vanishing point and the camera's principal point c x and c y .
- the relative camera pose can be computed from the first and second planar homographies H and H 2 using a projection method.
- Computer system 32 operating in accordance with projection element 64 ( FIG. 4 ), can operate upon the first and second planar homographies.
- H is the first planar homography
- H 2 is the second planar homography
- v is the location of the vertical vanishing point in the first image data
- v 2 is the location of the vertical vanishing point in the second image data
- F is the fundamental matrix between the first and second cameras.
- the fundamental matrix is computed as a least-squares solution to the system of equations in (4).
- R 1 UW T V T
- R 1 is the first possible relative rotation matrix
- R 2 is the second possible rotation matrix
- t 1 is the first possible relative translation
- t 2 is the second possible relative translation
- u 3 is the third column of U and
- Each of the matrices P 1 , P 2 , P 3 and P 4 represents a solution to the relative camera pose, but only one of them is the correct solution. It can be determined which of the four possible solutions is correct by backprojecting two or more foot position points in the first image data and two or more foot position points in the second image data onto the ground plane to reproduce a path that the person traveled. Any of the eight lines in the first image data and the corresponding line in the second image data can be used. That is, points from any of the four foot lines in the first image data and corresponding four foot lines in the second image data can be used. For example, as illustrated in FIG. 12A , points from line 112 in the first image data and the corresponding line 128 (or, in an embodiment that includes the above-described refinement method, line 128 ′) can be used.
- the trajectory of person 20 can be determined to have spanned foot position points 96 a , 96 b , 96 c and 96 d in that order.
- Each of the four solution matrices P 1 , P 2 , P 3 and P 4 can be applied to foot position points 96 a , 96 b , 96 c and 96 d , resulting in a projection of foot position points 96 a , 96 b , 96 c and 96 d into the ground plane 140 , as shown in FIG. 13 .
- the exemplary projection shown in FIG. 13 can represent the result of applying solution matrix P 1 .
- foot position point 96 c and 96 d are out of order with respect to the trajectory of person 20 that was determined above.
- the relative pose can be recovered from that solution matrix.
- the relative translation vector t is described with respect to an arbitrary scale, defined such that the cameras are a unit distance apart. The separation of the ground and ceiling planes is computed in terms of this arbitrary unit, and the unknown scale factor is recovered by assuming the ground and ceiling planes are actually separated by 1.8 m.
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Abstract
Description
I b =H −T I a (1)
where Ia is a foot line in the first image data, Ib is a corresponding foot line in the second image data and H is the homography between the first camera and the second camera.
where Ii a is the ith foot line in the first image data, xj a is the jth foot point in the first image data, xk b is the kth foot point in the second image data, H is the homography between the first and second camera, and d(x,I)2 is the square distance between a point and a line.
μ=(height of camera−height of person)/height of camera (3)
where the “height” is the height above the planar surface on which persons 20-24 (
where G1 represents the homology between the ground and ceiling planes in the first camera, G2 represents the homology between the ground and ceiling planes in the second camera, H is the ground plane homography between the first and second cameras and H2 is the ceiling plane homography between the first and second cameras. An arbitrary homology G is defined by the identity matrix I, the characteristic ratio μ, the image location of the vertical vanishing point v and the image location of the horizon line h. The horizon line h is determined by the camera's focal length f, and the x- and y-components vx and vy of the vertical vanishing point and the camera's principal point cx and cy.
H T F+F T H=0
H2T F+F T H2=0
v2T Fv=0 (4)
where H is the first planar homography, H2 is the second planar homography, v is the location of the vertical vanishing point in the first image data, v2 is the location of the vertical vanishing point in the second image data, and F is the fundamental matrix between the first and second cameras. The fundamental matrix is computed as a least-squares solution to the system of equations in (4). The essential matrix E is extracted from the fundamental matrix F via:
E=K 2 FK 1 (5)
where K1 and K2 are the intrinsic calibration matrices of the first and second cameras. Two possible relative rotations and two possible relative translations are determined by factoring E=UΣVT using singular value decomposition.
R 1 =UW T V T
R 2 =UWV T
t 1 =+u 3
t 2 =−u 3 (6)
where R1 is the first possible relative rotation matrix, R2 is the second possible rotation matrix, t1 is the first possible relative translation, t2 is the second possible relative translation and, by definition u3 is the third column of U and
The camera four possible camera projection matrices of the second camera are then
P 1 =K 2 [R 1 |t 1]
P 2 =K 2 [R 1 |t 2]
P 3 =K 2 [R 2 |t 1]
P 4 =K 2 [R 2 |t 2] (8)
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